Stochastic models of simple controlled systems just-in-time

We propose a new and simple approach for the mathematical description of a stochastic system that implements the well-known just-in-time principle. This principle (abbreviated JIT) is also known as a just-in-time manufacturing or Toyota Production System. The models of simple JIT systems are studie...

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Main Authors: Aleksander A. Butov, Anatoly A. Kovalenko
Format: Article
Language:English
Published: Samara State Technical University 2018-09-01
Series:Vestnik Samarskogo Gosudarstvennogo Tehničeskogo Universiteta. Seriâ: Fiziko-Matematičeskie Nauki
Subjects:
Online Access:http://mi.mathnet.ru/eng/vsgtu1633
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spelling doaj-4875223009ce4feca1444a2964cb23002020-11-25T00:26:21ZengSamara State Technical UniversityVestnik Samarskogo Gosudarstvennogo Tehničeskogo Universiteta. Seriâ: Fiziko-Matematičeskie Nauki1991-86152310-70812018-09-0122351853110.14498/vsgtu1633Stochastic models of simple controlled systems just-in-timeAleksander A. Butov0Anatoly A. Kovalenko 1Ulyanovsk State University, Faculty of Mathematics and Information Technologies, Ulyanovsk, 432017, Russian FederationUlyanovsk State University, Faculty of Mathematics and Information Technologies, Ulyanovsk, 432017, Russian FederationWe propose a new and simple approach for the mathematical description of a stochastic system that implements the well-known just-in-time principle. This principle (abbreviated JIT) is also known as a just-in-time manufacturing or Toyota Production System. The models of simple JIT systems are studied in this article in terms of point processes in the reverse time. This approach allows some assumptions about the processes inherent in real systems. Thus, we formulate and solve some, very simple, optimal control problems for a multi-stage just-in-time system and for a system with the bounded intensity. Results are obtained for the objective functions calculated as expected linear or quadratic forms of the deviations of the trajectories from the planned values. The proofs of the statements utilize the martingale technique. Often, just-in-time systems are considered in logistics tasks, and only (or predominantly) deterministic methods are used to describe them. However, it is obvious that stochastic events in such systems and corresponding processes are observed quite often. And it is in such stochastic cases that it is very important to find methods for the optimal management of processes just-in-time. For this description, we propose using martingale methods in this paper. Here, simple approaches for optimal control of stochastic JIT processes are demonstrated. As examples, we consider an extremely simple model of rescheduling and a method of controlling the intensity of the production process, when the probability of implementing a plan is not necessarily equal to one (with the corresponding quadratic loss functional). http://mi.mathnet.ru/eng/vsgtu1633modelingmartingaleintensityoptimizationreschedulingjust-in-time
collection DOAJ
language English
format Article
sources DOAJ
author Aleksander A. Butov
Anatoly A. Kovalenko
spellingShingle Aleksander A. Butov
Anatoly A. Kovalenko
Stochastic models of simple controlled systems just-in-time
Vestnik Samarskogo Gosudarstvennogo Tehničeskogo Universiteta. Seriâ: Fiziko-Matematičeskie Nauki
modeling
martingale
intensity
optimization
rescheduling
just-in-time
author_facet Aleksander A. Butov
Anatoly A. Kovalenko
author_sort Aleksander A. Butov
title Stochastic models of simple controlled systems just-in-time
title_short Stochastic models of simple controlled systems just-in-time
title_full Stochastic models of simple controlled systems just-in-time
title_fullStr Stochastic models of simple controlled systems just-in-time
title_full_unstemmed Stochastic models of simple controlled systems just-in-time
title_sort stochastic models of simple controlled systems just-in-time
publisher Samara State Technical University
series Vestnik Samarskogo Gosudarstvennogo Tehničeskogo Universiteta. Seriâ: Fiziko-Matematičeskie Nauki
issn 1991-8615
2310-7081
publishDate 2018-09-01
description We propose a new and simple approach for the mathematical description of a stochastic system that implements the well-known just-in-time principle. This principle (abbreviated JIT) is also known as a just-in-time manufacturing or Toyota Production System. The models of simple JIT systems are studied in this article in terms of point processes in the reverse time. This approach allows some assumptions about the processes inherent in real systems. Thus, we formulate and solve some, very simple, optimal control problems for a multi-stage just-in-time system and for a system with the bounded intensity. Results are obtained for the objective functions calculated as expected linear or quadratic forms of the deviations of the trajectories from the planned values. The proofs of the statements utilize the martingale technique. Often, just-in-time systems are considered in logistics tasks, and only (or predominantly) deterministic methods are used to describe them. However, it is obvious that stochastic events in such systems and corresponding processes are observed quite often. And it is in such stochastic cases that it is very important to find methods for the optimal management of processes just-in-time. For this description, we propose using martingale methods in this paper. Here, simple approaches for optimal control of stochastic JIT processes are demonstrated. As examples, we consider an extremely simple model of rescheduling and a method of controlling the intensity of the production process, when the probability of implementing a plan is not necessarily equal to one (with the corresponding quadratic loss functional).
topic modeling
martingale
intensity
optimization
rescheduling
just-in-time
url http://mi.mathnet.ru/eng/vsgtu1633
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AT anatolyakovalenko stochasticmodelsofsimplecontrolledsystemsjustintime
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